CVIVMar 22, 2020

Review of data analysis in vision inspection of power lines with an in-depth discussion of deep learning technology

arXiv:2003.09802v115 citations
AI Analysis

It provides a comprehensive overview for researchers developing deep-learning-based systems to improve power line reliability and safety, but it is incremental as it synthesizes existing work.

This paper reviews existing literature on deep learning methods for analyzing power line inspection data, focusing on component detection and fault diagnosis, and identifies key challenges and future research trends.

The widespread popularity of unmanned aerial vehicles enables an immense amount of power lines inspection data to be collected. How to employ massive inspection data especially the visible images to maintain the reliability, safety, and sustainability of power transmission is a pressing issue. To date, substantial works have been conducted on the analysis of power lines inspection data. With the aim of providing a comprehensive overview for researchers who are interested in developing a deep-learning-based analysis system for power lines inspection data, this paper conducts a thorough review of the current literature and identifies the challenges for future research. Following the typical procedure of inspection data analysis, we categorize current works in this area into component detection and fault diagnosis. For each aspect, the techniques and methodologies adopted in the literature are summarized. Some valuable information is also included such as data description and method performance. Further, an in-depth discussion of existing deep-learning-related analysis methods in power lines inspection is proposed. Finally, we conclude the paper with several research trends for the future of this area, such as data quality problems, small object detection, embedded application, and evaluation baseline.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes